Addressing bias in artificial intelligence for public health surveillance.

IF 3.3 2区 哲学 Q1 ETHICS Journal of Medical Ethics Pub Date : 2024-02-20 DOI:10.1136/jme-2022-108875
Lidia Flores, Seungjun Kim, Sean D Young
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引用次数: 0

Abstract

Components of artificial intelligence (AI) for analysing social big data, such as natural language processing (NLP) algorithms, have improved the timeliness and robustness of health data. NLP techniques have been implemented to analyse large volumes of text from social media platforms to gain insights on disease symptoms, understand barriers to care and predict disease outbreaks. However, AI-based decisions may contain biases that could misrepresent populations, skew results or lead to errors. Bias, within the scope of this paper, is described as the difference between the predictive values and true values within the modelling of an algorithm. Bias within algorithms may lead to inaccurate healthcare outcomes and exacerbate health disparities when results derived from these biased algorithms are applied to health interventions. Researchers who implement these algorithms must consider when and how bias may arise. This paper explores algorithmic biases as a result of data collection, labelling and modelling of NLP algorithms. Researchers have a role in ensuring that efforts towards combating bias are enforced, especially when drawing health conclusions derived from social media posts that are linguistically diverse. Through the implementation of open collaboration, auditing processes and the development of guidelines, researchers may be able to reduce bias and improve NLP algorithms that improve health surveillance.

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解决公共卫生监测人工智能中的偏见问题。
用于分析社会大数据的人工智能(AI)组件,如自然语言处理(NLP)算法,提高了健康数据的及时性和稳健性。NLP 技术已被用于分析来自社交媒体平台的大量文本,以深入了解疾病症状、了解护理障碍并预测疾病爆发。然而,基于人工智能的决策可能包含偏差,这些偏差可能会误导人群、歪曲结果或导致错误。在本文范围内,偏差被描述为算法建模中预测值与真实值之间的差异。算法中的偏差可能会导致不准确的医疗结果,并在将这些有偏差的算法得出的结果应用于医疗干预时加剧健康差距。实施这些算法的研究人员必须考虑何时以及如何产生偏差。本文探讨了 NLP 算法在数据收集、标记和建模过程中产生的算法偏差。研究人员有责任确保消除偏见的努力得到执行,尤其是在从语言多样化的社交媒体帖子中得出健康结论时。通过实施开放式合作、审计流程和制定指导方针,研究人员或许能够减少偏见并改进 NLP 算法,从而改善健康监测工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Medical Ethics
Journal of Medical Ethics 医学-医学:伦理
CiteScore
7.80
自引率
9.80%
发文量
164
审稿时长
4-8 weeks
期刊介绍: Journal of Medical Ethics is a leading international journal that reflects the whole field of medical ethics. The journal seeks to promote ethical reflection and conduct in scientific research and medical practice. It features articles on various ethical aspects of health care relevant to health care professionals, members of clinical ethics committees, medical ethics professionals, researchers and bioscientists, policy makers and patients. Subscribers to the Journal of Medical Ethics also receive Medical Humanities journal at no extra cost. JME is the official journal of the Institute of Medical Ethics.
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